Federated Reinforcement Learning in IoT: Applications, Opportunities and Open Challenges

被引:12
作者
Pinto Neto, Euclides Carlos [1 ]
Sadeghi, Somayeh [1 ]
Zhang, Xichen [1 ]
Dadkhah, Sajjad [1 ]
机构
[1] Univ New Brunswick UNB, Canadian Inst Cybersecur CIC, Fredericton, NB E3B 5A3, Canada
来源
APPLIED SCIENCES-BASEL | 2023年 / 13卷 / 11期
关键词
internet of things (IoT); federated reinforcement learning (FRL); reinforcement learning (RL); federated learning (FL); survey; RESOURCE-ALLOCATION; INTERNET; FRAMEWORK; THINGS; NETWORKS;
D O I
10.3390/app13116497
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The internet of things (IoT) represents a disruptive concept that has been changing society in several ways. There have been several successful applications of IoT in the industry. For example, in transportation systems, the novel internet of vehicles (IoV) concept has enabled new research directions and automation solutions. Moreover, reinforcement learning (RL), federated learning (FL), and federated reinforcement learning (FRL) have demonstrated remarkable success in solving complex problems in different applications. In recent years, new solutions have been developed based on this combined framework (i.e., federated reinforcement learning). Conversely, there is a lack of analysis concerning IoT applications and a standard view of challenges and future directions of the current FRL landscape. Thereupon, the main goal of this research is to present a literature review of federated reinforcement learning (FRL) applications in IoT from multiple perspectives. We focus on analyzing applications in multiple areas (e.g., security, sustainability and efficiency, vehicular solutions, and industrial services) to highlight existing solutions, their characteristics, and research gaps. Additionally, we identify key short- and long-term challenges leading to new opportunities in the field. This research intends to picture the current FRL ecosystem in IoT to foster the development of new solutions based on existing challenges.
引用
收藏
页数:27
相关论文
共 147 条
  • [1] Q-Learning Aided Resource Allocation and Environment Recognition in LoRaWAN With CSMA/CA
    Aihara, Naoki
    Adachi, Koichi
    Takyu, Osamu
    Ohta, Mai
    Fujii, Takeo
    [J]. IEEE ACCESS, 2019, 7 : 152126 - 152137
  • [2] A Federated Reinforcement Learning Framework for Incumbent Technologies in Beyond 5G Networks
    Ali, Rashid
    Bin Zikria, Yousaf
    Garg, Sahil
    Bashir, Ali Kashif
    Obaidat, Mohammad S.
    Kim, Hyung Seok
    [J]. IEEE NETWORK, 2021, 35 (04): : 152 - 159
  • [3] Anwar A., 2021, arXiv
  • [4] Babaeizadeh M, 2017, Arxiv, DOI arXiv:1611.06256
  • [5] Edge-AI: IoT Request Service Provisioning in Federated Edge Computing Using Actor-Critic Reinforcement Learning
    Baghban, Hojjat
    Rezapour, Amir
    Hsu, Ching-Hsien
    Nuannimnoi, Sirapop
    Huang, Ching-Yao
    [J]. IEEE TRANSACTIONS ON ENGINEERING MANAGEMENT, 2024, 71 : 12519 - 12528
  • [6] Fast reinforcement learning with generalized policy updates
    Barreto, Andre
    Hou, Shaobo
    Borsa, Diana
    Silver, David
    Precup, Doina
    [J]. PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2020, 117 (48) : 30079 - 30087
  • [7] Bianchi RAC, 2009, LECT NOTES ARTIF INT, V5650, P75, DOI 10.1007/978-3-642-02998-1_7
  • [8] Branavan S. R. K., 2009, P JOINT C M ACL INT, P82, DOI DOI 10.3115/1687878.1687892
  • [9] Brim A, 2020, 2020 10TH ANNUAL COMPUTING AND COMMUNICATION WORKSHOP AND CONFERENCE (CCWC), P222, DOI [10.1109/ccwc47524.2020.9031159, 10.1109/CCWC47524.2020.9031159]
  • [10] Perceived Internet privacy concerns on social networks in Europe
    Cecere, Grazia
    Le Guel, Fabrice
    Soulie, Nicolas
    [J]. TECHNOLOGICAL FORECASTING AND SOCIAL CHANGE, 2015, 96 : 277 - 287